Fuzzy Modeling Development for Lettuce Plants Irrigated with Magnetically Treated Water

Author:

Ferrari Putti Fernando1ORCID,Cremasco Camila Pires1ORCID,Neto Alfredo Bonini1ORCID,Barbosa Ana Carolina Kummer2,Júnior Josué Ferreira da Silva3,Reis André Rodrigues dos1ORCID,Góes Bruno César4,Arruda Bruna1ORCID,Filho Luís Roberto Almeida Gabriel1ORCID

Affiliation:

1. School of Science and Engineering, São Paulo State University (UNESP), Tupã 01049-010, SP, Brazil

2. Department of Civil Engineering, Ponta Grossa State University (UEPG), Ponta Grossa 84010-330, PR, Brazil

3. Department of Agronomy, Federal University of Triângulo Mineiro (UFMT), Iturama 38280-000, MG, Brazil

4. Department for Business, Adamantina College of Technology (FATEC), Adamantina 17800-000, SP, Brazil

Abstract

Due to the worldwide water supply crisis, sustainable strategies are required for a better use of this resource. The use of magnetic water has been shown to have potential for improving irrigation efficacy. However, a lack of modelling methods that correspond to the experimental results and minimize error is observed. This study aimed to estimate the replacement rates of magnetic water provided by irrigation for lettuce production using a mathematical model based on fuzzy logic and to compare multiple polynomial regression analysis and the fuzzy model. A greenhouse study was conducted with lettuce using two types of water, magnetic water (MW) and conventional water (CW), and five irrigation levels (25, 50, 75, 100 and 125%) of crop evapotranspiration. Plant samples for biometric lettuce were taken at 14, 21, 28 and 35 days after transplanting. The data were analyzed via multiple polynomial regression and fuzzy mathematical modeling, followed by an inference of the models and a comparison between the methods. The highest biometric values for lettuce were observed when irrigated with MW during the different phenological stage evaluated. The fuzzy model provided a more exact adjustment when compared to the multiple polynomial regressions.

Funder

Improvement of Higher Education Personnel

Publisher

MDPI AG

Subject

Plant Science,Ecology,Ecology, Evolution, Behavior and Systematics

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